DocumentCode
3571219
Title
Understanding the Power of Stigmergy of Anonymous Agents in Discrete Environments
Author
D´Angelo, Gianlorenzo ; Defago, Xavier ; Nisse, Nicolas
Author_Institution
Gran Sasso Sci. Inst. (GSSI), L´Aquila, Italy
fYear
2014
Firstpage
50
Lastpage
59
Abstract
Communication by stigmergy consists, for agents/robots devoid of other dedicated communication devices, in exchanging information by observing each other´s movements, similar to how honeybees use a dance to inform each other on the location of food sources. Stigmergy, while a popular technique in soft computing (e.g., Swarm intelligence and swarm robotics), has received little attention from a computational viewpoint, with only one study proposing a method in a continuous environment. An important question is whether there are limits intrinsic to the environment on the feasibility of stigmergy. While it is not the case in a continuous environment, we show that the answer is quite different when the environment is discrete. This paper considers stigmergy in graphs and identifies classes of graphs in which robots can communicate by stigmergy. We provide two algorithms with different tradeoffs. One algorithm achieves faster stigmergy when the density of robots is low enough to let robots move independently. This algorithm works when the graph contains some particular pair wise-disjoint sub graphs. The second algorithm, while slower solves the problem under an extremely high density of robots assuming that the graph admits some large cycle. Both algorithms are described in a general way, for any graph that admits the desired properties and with identified nodes. We show how the latter assumption can be removed in more specific topologies. Indeed, we consider stigmergy in the grid which offers additional orientation information not available in a general graphs, allowing us to relax some of the assumptions. Given an N × M anonymous grid, we show that the first algorithm requires O (M) steps to achieve communication by stigmergy, where M is the maximum length of a communication. Message, but it works only if the number of robots is less than ⌊N·M/ 9⌋. The second algorithm, which requires O (k2) steps, where k is the number of r- bots, on the other hand, works for up to N · M - 5 robots. In both cases, we consider very weak assumptions on the robots capabilities: i.e., We assume that the robots are anonymous, asynchronous, uniform, and execute deterministic algorithms.
Keywords
deterministic algorithms; graph theory; mobile robots; anonymous agent; deterministic algorithm; discrete environment; mobile robot; pair wise-disjoint subgraph; soft computing; stigmergic communication; Particle swarm optimization; Protocols; Robot kinematics; Robot sensing systems; Synchronization; Writing; Algorithms; Complexity; Computational robots; Information exchange; Mobile agents in graphs; Theoretical computer science;
fLanguage
English
Publisher
ieee
Conference_Titel
Computing and Networking (CANDAR), 2014 Second International Symposium on
Type
conf
DOI
10.1109/CANDAR.2014.95
Filename
7052163
Link To Document